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Variable window adaptive Kernel Principal Component Analysis for nonlinear nonstationary process monitoring

机译:非线性非平稳过程监测的可变窗口自适应核主成分分析

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摘要

On-line control of nonlinear nonstationary processes using multivariate statistical methods has recently prompt a lot of interest due to its industrial practical importance. Indeed basic process control methods do not allow monitoring of such processes. For this purpose this study proposes a variable window real-time monitoring system based on a fast block adaptive Kernel Principal Component Analysis scheme. While previous adaptive KPCA models allow only handling of one observation at a time, in this study we propose a way to fast update or downdate the KPCA model when a block of data is provided and not only one observation. Using a variable window size procedure to determine the model size and adaptive chart parameters, this model is applied to monitor two simulated benchmark processes. A comparison of performances of the adopted control strategy with various Principal Component Analysis (PCA) control models shows that the derived strategy is robust and yields better detection abilities of disturbances.
机译:由于具有工业实用性,使用多元统计方法对非线性非平稳过程进行在线控制最近引起了人们的极大兴趣。实际上,基本的过程控制方法不允许监视此类过程。为此,本研究提出了一种基于快速块自适应内核主成分分析方案的可变窗口实时监控系统。虽然以前的自适应KPCA模型一次只能处理一个观测值,但在本研究中,我们提出了一种在提供一组数据而不仅仅是一个观测值时快速更新或降级KPCA模型的方法。使用可变的窗口大小过程来确定模型大小和自适应图表参数,此模型可用于监视两个模拟基准过程。将所采用的控制策略与各种主成分分析(PCA)控制模型的性能进行比较表明,所推导的策略具有鲁棒性,并且产生了更好的干扰检测能力。

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